Stability and repeatability of HMM based probability outputs across dynamic handwritten signature features
This paper presents a study on the stability and repeatability of Hidden Markov Modeling based probability outputs across several different dynamic handwritten signature features. This study compares such values extracted from signature samples compiled within a single data collection session (i.e....
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my.uniten.dspace-297222023-12-28T15:41:47Z Stability and repeatability of HMM based probability outputs across dynamic handwritten signature features Ahmad S.M.S. Shakil A. Anwar R.Md. 24721182400 24722081200 24721188400 Biometrics Data acquisition Hidden Markov models Information technology Probability Random processes System stability Analysis results Data collections Handwritten signatures Indentifying Online signatures Signature verifications Extraction This paper presents a study on the stability and repeatability of Hidden Markov Modeling based probability outputs across several different dynamic handwritten signature features. This study compares such values extracted from signature samples compiled within a single data collection session (i.e. between intra-session) and across several data collection sessions (i.e. between inter-sessions). The primary aim of this study is to investigate the indentifying capability of local online signature Hidden Markov Modeling based probability outputs which have implications on the accuracy of biometrics signature verification system which utilize similar HMM approach. This paper reports on an analysis results carried out on the online genuine signature counterparts of Sigma database - a compilation of over 6000 genuine signature samples that were gathered over a series of data collection sessions. � 2008 IEEE. Final 2023-12-28T07:41:47Z 2023-12-28T07:41:47Z 2008 Conference paper 10.1109/ITSIM.2008.4631698 2-s2.0-57349191671 https://www.scopus.com/inward/record.uri?eid=2-s2.0-57349191671&doi=10.1109%2fITSIM.2008.4631698&partnerID=40&md5=d226617a2bee81c0ab56c2c483afbe8f https://irepository.uniten.edu.my/handle/123456789/29722 2 4631698 Scopus |
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Biometrics Data acquisition Hidden Markov models Information technology Probability Random processes System stability Analysis results Data collections Handwritten signatures Indentifying Online signatures Signature verifications Extraction |
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Biometrics Data acquisition Hidden Markov models Information technology Probability Random processes System stability Analysis results Data collections Handwritten signatures Indentifying Online signatures Signature verifications Extraction Ahmad S.M.S. Shakil A. Anwar R.Md. Stability and repeatability of HMM based probability outputs across dynamic handwritten signature features |
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This paper presents a study on the stability and repeatability of Hidden Markov Modeling based probability outputs across several different dynamic handwritten signature features. This study compares such values extracted from signature samples compiled within a single data collection session (i.e. between intra-session) and across several data collection sessions (i.e. between inter-sessions). The primary aim of this study is to investigate the indentifying capability of local online signature Hidden Markov Modeling based probability outputs which have implications on the accuracy of biometrics signature verification system which utilize similar HMM approach. This paper reports on an analysis results carried out on the online genuine signature counterparts of Sigma database - a compilation of over 6000 genuine signature samples that were gathered over a series of data collection sessions. � 2008 IEEE. |
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24721182400 |
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24721182400 Ahmad S.M.S. Shakil A. Anwar R.Md. |
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Conference paper |
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Ahmad S.M.S. Shakil A. Anwar R.Md. |
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Ahmad S.M.S. |
title |
Stability and repeatability of HMM based probability outputs across dynamic handwritten signature features |
title_short |
Stability and repeatability of HMM based probability outputs across dynamic handwritten signature features |
title_full |
Stability and repeatability of HMM based probability outputs across dynamic handwritten signature features |
title_fullStr |
Stability and repeatability of HMM based probability outputs across dynamic handwritten signature features |
title_full_unstemmed |
Stability and repeatability of HMM based probability outputs across dynamic handwritten signature features |
title_sort |
stability and repeatability of hmm based probability outputs across dynamic handwritten signature features |
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2023 |
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1806428241801510912 |